Machine Learning Techniques for Blind Beam Alignment in mmWave Massive MIMO.

Aymen Ktari, Hadi Ghauch, Ghaya Rekaya-Ben Othman
Author Information
  1. Aymen Ktari: Télécom Paris, 91120 Paris, France. ORCID
  2. Hadi Ghauch: Télécom Paris, 91120 Paris, France.
  3. Ghaya Rekaya-Ben Othman: Télécom Paris, 91120 Paris, France.

Abstract

This paper proposes methods for Machine Learning (ML)-based Beam Alignment (BA), using low-complexity ML models, and achieves a small pilot overhead. We assume a single-user massive mmWave MIMO, Uplink, using a fully analog architecture. Assuming large-dimension codebooks of possible beam patterns at UE and BS, this data-driven and model-based approach aims to partially and blindly sound a small subset of beams from these codebooks. The proposed BA is blind (no CSI), based on Received Signal Energies (RSEs), and circumvents the need for exhaustively sounding all possible beams. A sub-sampled subset of beams is then used to train several ML models such as low-rank Matrix Factorization (MF), non-negative MF (NMF), and shallow Multi-Layer Perceptron (MLP). We provide an extensive mathematical description of these models and the algorithms for each of them. Our extensive numerical results show that, by sounding only 10% of the beams from the UE and BS codebooks, the proposed ML tools are able to accurately predict the non-sounded beams through multiple transmitted power regimes. This observation holds as the codebook sizes at UE and BS vary from 128×128 to 1024×1024.

Keywords

Word Cloud

Created with Highcharts 10.0.0beamsMLBeamAlignmentBAmodelsmmWaveMIMOcodebooksUEBSMachineLearningusingsmallmassivepossiblesubsetproposedblindsoundingMatrixFactorizationMFMulti-LayerPerceptronextensivepaperproposesmethods-basedlow-complexityachievespilotoverheadassumesingle-userUplinkfullyanalogarchitectureAssuminglarge-dimensionbeampatternsdata-drivenmodel-basedapproachaimspartiallyblindlysoundCSIbasedReceivedSignalEnergiesRSEscircumventsneedexhaustivelysub-sampledusedtrainseverallow-ranknon-negativeNMFshallowMLPprovidemathematicaldescriptionalgorithmsnumericalresultsshow10%toolsableaccuratelypredictnon-soundedmultipletransmittedpowerregimesobservationholdscodebooksizesvary128×1281024×1024TechniquesBlindMassiveML-basedantennasnon-linearregression

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